Scopri come l’Intelligenza Artificiale sta trasformando il mondo: dalle reti neurali ai modelli predittivi, il futuro dell’innovazione è qui.

Diagnostic performance of an AI algorithm for the detection of appendicular bone fractures in pediatric patients

To evaluate the diagnostic performance of an Artificial Intelligence (AI) algorithm, previously trained using both adult and pediatric patients, for the detection of acute appendicular fractures in the pediatric population on conventional X-ray radiography (CXR).

Continua a leggereDiagnostic performance of an AI algorithm for the detection of appendicular bone fractures in pediatric patients

Università di Enna Kore e synbrAIn: una collaborazione proficua per l’innovazione tecnologica

  • Autore dell'articolo:,
  • Categoria dell'articolo:Notizie
  • Tempo di lettura:4 minuti di lettura

Palermo, 19/07/2024 – Le lauree magistrali in Ingegneria dell’Intelligenza Artificiale e della Sicurezza Informatica conferite dall’Università degli Studi di Enna Kore (UNIKORE) sono il risultato dell’attività di ricerca e innovazione portata avanti negli anni e che, oggi, fa sì che l’Università siciliana sia…

Continua a leggereUniversità di Enna Kore e synbrAIn: una collaborazione proficua per l’innovazione tecnologica

Comparison of entropy rate measures for the evaluation of time series complexity: Simulations and application to heart rate and respiratory variability

Most real-world systems are characterised by dynamics and correlations emerging at multiple time scales, and are therefore referred to as complex systems. In this work, the complexity of time series produced by complex systems was investigated in the frame of information theory computing the entropy rate via the conditional entropy (CE) measure.

Continua a leggereComparison of entropy rate measures for the evaluation of time series complexity: Simulations and application to heart rate and respiratory variability

Artificial Intelligence Applied to Chest X-ray: A Reliable Tool to Assess the Differential Diagnosis of Lung Pneumonia in the Emergency Department

Considering the large number of patients with pulmonary symptoms admitted to the emergency department daily, it is essential to diagnose them correctly.

Continua a leggereArtificial Intelligence Applied to Chest X-ray: A Reliable Tool to Assess the Differential Diagnosis of Lung Pneumonia in the Emergency Department

Deep learning and wearable sensors for the diagnosis and monitoring of Parkinson’s disease: A systematic review

Parkinson’s disease (PD) is a neurodegenerative disorder that produces both motor and non-motor complications, degrading the quality of life of PD patients. Over the past two decades, the use of wearable devices in combination with machine learning algorithms has provided promising methods for more objective and continuous monitoring of PD.

Continua a leggereDeep learning and wearable sensors for the diagnosis and monitoring of Parkinson’s disease: A systematic review

Analyzing domain shift when using additional data for the MICCAI KiTS23 Challenge

Using additional training data is known to improve the results, especially for medical image 3D segmentation where there is a lack of training material and the model needs to generalize well from few available data.

Continua a leggereAnalyzing domain shift when using additional data for the MICCAI KiTS23 Challenge

Automated Stabilization, Enhancement and Capillaries Segmentation in Videocapillaroscopy

Oral capillaroscopy is a critical and non-invasive technique used to evaluate microcirculation. Its ability to observe small vessels in vivo has generated significant interest in the field. Capillaroscopy serves as an essential tool for diagnosing and prognosing various pathologies, with anatomic–pathological lesions playing a crucial role in their progression.

Continua a leggereAutomated Stabilization, Enhancement and Capillaries Segmentation in Videocapillaroscopy

Enhancing video game experience with playtime training and tailoring of virtual opponents: Using Deep Q-Network based Reinforcement Learning on a Multi-Agent Environment

When interacting with fictional environments, the users' sense of immersion can be broken when characters act in mechanical and predictable ways.

Continua a leggereEnhancing video game experience with playtime training and tailoring of virtual opponents: Using Deep Q-Network based Reinforcement Learning on a Multi-Agent Environment

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